Redirecting to original paper in 30 seconds...
Click below to go immediately or wait for automatic redirect
📄 Abstract
Abstract: Modern multi-modal and multi-site data frequently suffer from blockwise
missingness, where subsets of features are missing for groups of individuals,
creating complex patterns that challenge standard inference methods. Existing
approaches have critical limitations: complete-case analysis discards
informative data and is potentially biased; doubly robust estimators for
non-monotone missingness-where the missingness patterns are not nested subsets
of one another-can be theoretically efficient but lack closed-form solutions
and often fail to scale; and blackbox imputation can leverage partially
observed data to improve efficiency but provides no inferential guarantees when
misspecified. To address the limitations of these existing methods, we propose
imputation-powered inference (IPI), a model-lean framework that combines the
flexibility of blackbox imputation with bias correction using fully observed
data, drawing on ideas from prediction-powered inference and semiparametric
inference. IPI enables valid and efficient M-estimation under missing
completely at random (MCAR) blockwise missingness and improves subpopulation
inference under a weaker assumption we formalize as first-moment MCAR, for
which we also provide practical diagnostics. Simulation studies and a clinical
application demonstrate that IPI may substantially improve subpopulation
efficiency relative to complete-case analysis, while maintaining statistical
validity in settings where both doubly robust estimators and naive imputation
fail to achieve nominal coverage.